Title :
Transform coding by lateral inhibited neural nets
Author :
Brause, Rüdiger W.
Author_Institution :
J.W. Goethe-Univ., Frankfurt, Germany
Abstract :
One of the most popular encoding techniques for sensor data is transform coding. This encoding schema is composed of two stages: a linear transformation stage with a nonzero kernel and a vector quantization stage. For the first stage, the author describes a new implementation approach by artifical neural networks. The problem of determining the optimal transformation coefficients is solved by learning the coefficients by a lateral inhibited neural network. After a short introduction to the topic the author focuses on this model and a local stability analysis of the fixpoints for the serial dynamics is provided. The resulting parameter regime is used in a network simulation example using picture statistics. Additionally, the simulations reveal that a biologically-like growing lateral inhibition influence leads to a speed-up of the learning convergence of that model
Keywords :
learning (artificial intelligence); neural nets; signal processing; transform coding; vector quantisation; artifical neural networks; biologically-like growing lateral inhibition; encoding techniques; fixpoints; lateral inhibited neural nets; learning convergence; linear transformation stage; local stability analysis; network simulation example; nonzero kernel; optimal transformation coefficients; parameter regime; picture statistics; sensor data; serial dynamics; transform coding; vector quantization stage; Biological information theory; Biological system modeling; Convergence; Encoding; Kernel; Neural networks; Stability analysis; Statistics; Transform coding; Vector quantization;
Conference_Titel :
Tools with Artificial Intelligence, 1993. TAI '93. Proceedings., Fifth International Conference on
Conference_Location :
Boston, MA
Print_ISBN :
0-8186-4200-9
DOI :
10.1109/TAI.1993.633930